Submit Search
Upload
Java Development with MongoDB (James Williams)
•
Download as PPT, PDF
•
19 likes
•
2,615 views
M
MongoSF
Follow
Technology
Report
Share
Report
Share
1 of 21
Download now
Recommended
Lightning talk showing how to make MongoDB more Groovy Given at NoSQL Live Boston March 11,2010
Using MongoDB With Groovy
Using MongoDB With Groovy
James Williams
Presentation about Python and MongoDB
Python and MongoDB
Python and MongoDB
Christiano Anderson
Madrid Python User Group Presentation on Pymongo and code to connect to MongoDB
Python and MongoDB
Python and MongoDB
Norberto Leite
The emerging world of mongo db csp
The emerging world of mongo db csp
Carlos Sánchez Pérez
MongoDB is one of the most popular databases these days and there are a few reasons for such popularity. One of these reasons is the excellent integration with different programming languages and development frameworks. In the case of Python we take it a few notches up (native use of dictionaries, integration with asynchronous libraries (twisted, gevent), good support for web frameworks like django, flask, bottle ... (mongoengine anyone?). This talk is about the several different projects that we support, the way to effectively use Python and MongoDB together and a few other improvements and announcements.
MongoDB and Python
MongoDB and Python
Norberto Leite
This talk will introduce the features of MongoDB by walking through how one can building a simple location-based checkin application using MongoDB. The talk will cover the basics of MongoDB's document model, query language, map-reduce framework and deployment architecture.
Webinar: Building Your First App
Webinar: Building Your First App
MongoDB
A brief mongodb intro
A Brief MongoDB Intro
A Brief MongoDB Intro
Scott Hernandez
Slides from a talk I gave at MongoNYC on using MongoDB with Drupal. I will most likely be doing this as a webcast and giving this presentation at Drupalcamp NYC 8 this July.
Mongo-Drupal
Mongo-Drupal
Forest Mars
Recommended
Lightning talk showing how to make MongoDB more Groovy Given at NoSQL Live Boston March 11,2010
Using MongoDB With Groovy
Using MongoDB With Groovy
James Williams
Presentation about Python and MongoDB
Python and MongoDB
Python and MongoDB
Christiano Anderson
Madrid Python User Group Presentation on Pymongo and code to connect to MongoDB
Python and MongoDB
Python and MongoDB
Norberto Leite
The emerging world of mongo db csp
The emerging world of mongo db csp
Carlos Sánchez Pérez
MongoDB is one of the most popular databases these days and there are a few reasons for such popularity. One of these reasons is the excellent integration with different programming languages and development frameworks. In the case of Python we take it a few notches up (native use of dictionaries, integration with asynchronous libraries (twisted, gevent), good support for web frameworks like django, flask, bottle ... (mongoengine anyone?). This talk is about the several different projects that we support, the way to effectively use Python and MongoDB together and a few other improvements and announcements.
MongoDB and Python
MongoDB and Python
Norberto Leite
This talk will introduce the features of MongoDB by walking through how one can building a simple location-based checkin application using MongoDB. The talk will cover the basics of MongoDB's document model, query language, map-reduce framework and deployment architecture.
Webinar: Building Your First App
Webinar: Building Your First App
MongoDB
A brief mongodb intro
A Brief MongoDB Intro
A Brief MongoDB Intro
Scott Hernandez
Slides from a talk I gave at MongoNYC on using MongoDB with Drupal. I will most likely be doing this as a webcast and giving this presentation at Drupalcamp NYC 8 this July.
Mongo-Drupal
Mongo-Drupal
Forest Mars
Java Development with MongoDB
Java Development with MongoDB
Scott Hernandez
As the applications we build are increasingly driven by text, doing data ingestion, management, loading, and preprocessing in a robust, organized, parallel, and memory-safe way can get tricky. This talk walks through the highs (a custom billion-word corpus!), the lows (segfaults, 400 errors, pesky mp3s), and the new Python libraries we built to ingest and preprocess text for machine learning. While applications like Siri, Cortana, and Alexa may still seem like novelties, language-aware applications are rapidly becoming the new norm. Under the hood, these applications take in text data as input, parse it into composite parts, compute upon those composites, and then recombine them to deliver a meaningful and tailored end result. The best applications use language models trained on domain-specific corpora (collections of related documents containing natural language) that reduce ambiguity and prediction space to make results more intelligible. Here's the catch: these corpora are huge, generally consisting of at least hundreds of gigabytes of data inside of thousands of documents, and often more! In this talk, we'll see how working with text data is substantially different from working with numeric data, and show that ingesting a raw text corpus in a form that will support the construction of a data product is no trivial task. For instance, when dealing with a text corpus, you have to consider not only how the data comes in (e.g. respecting rate limits, terms of use, etc.), but also where to store the data and how to keep it organized. Because the data comes from the web, it's often unpredictable, containing not only text but audio files, ads, videos, and other kinds of web detritus. Since the datasets are large, you need to anticipate potential performance problems and ensure memory safety through streaming data loading and multiprocessing. Finally, in anticipation of the machine learning components, you have to establish a standardized method of transforming your raw ingested text into a corpus that's ready for computation and modeling. In this talk, we'll explore many of the challenges we experienced along the way and introduce two Python packages that make this work a bit easier: Baleen and Minke. Baleen is a package for ingesting formal natural language data from the discourse of professional and amateur writers, like bloggers and news outlets, in a categorized fashion. Minke extends Baleen with a library that performs parallel data loading, preprocessing, normalization, and keyphrase extraction to support machine learning on a large-scale custom corpus.
Building a Gigaword Corpus (PyCon 2017)
Building a Gigaword Corpus (PyCon 2017)
Rebecca Bilbro
This Back to Basics webinar series will introduce you to NoSQL and the MongoDB database. You will find out what MongoDB is, why you would use it, and what you would use it for.
Back to Basics: My First MongoDB Application
Back to Basics: My First MongoDB Application
MongoDB
As the applications we build are increasingly driven by text, doing data ingestion, management, loading, and preprocessing in a robust, organized, parallel, and memory-safe way can get tricky. This talk walks through the highs (a custom billion-word corpus!), the lows (segfaults, 400 errors, pesky mp3s), and the new Python libraries we built to ingest and preprocess text for machine learning. While applications like Siri, Cortana, and Alexa may still seem like novelties, language-aware applications are rapidly becoming the new norm. Under the hood, these applications take in text data as input, parse it into composite parts, compute upon those composites, and then recombine them to deliver a meaningful and tailored end result. The best applications use language models trained on domain-specific corpora (collections of related documents containing natural language) that reduce ambiguity and prediction space to make results more intelligible. Here's the catch: these corpora are huge, generally consisting of at least hundreds of gigabytes of data inside of thousands of documents, and often more! In this talk, we'll see how working with text data is substantially different from working with numeric data, and show that ingesting a raw text corpus in a form that will support the construction of a data product is no trivial task. For instance, when dealing with a text corpus, you have to consider not only how the data comes in (e.g. respecting rate limits, terms of use, etc.), but also where to store the data and how to keep it organized. Because the data comes from the web, it's often unpredictable, containing not only text but audio files, ads, videos, and other kinds of web detritus. Since the datasets are large, you need to anticipate potential performance problems and ensure memory safety through streaming data loading and multiprocessing. Finally, in anticipation of the machine learning components, you have to establish a standardized method of transforming your raw ingested text into a corpus that's ready for computation and modeling. In this talk, we'll explore many of the challenges we experienced along the way and introduce two Python packages that make this work a bit easier: Baleen and Minke. Baleen is a package for ingesting formal natural language data from the discourse of professional and amateur writers, like bloggers and news outlets, in a categorized fashion. Minke extends Baleen with a library that performs parallel data loading, preprocessing, normalization, and keyphrase extraction to support machine learning on a large-scale custom corpus.
Data Intelligence 2017 - Building a Gigaword Corpus
Data Intelligence 2017 - Building a Gigaword Corpus
Rebecca Bilbro
Beaker is probably the most widespread cross-framework solution to manage sessions and caching in the python web ecosystem. Born in 2005 from Pylons author has been historically maintained together with the Pylons framework. Since Pylons has been deprecated in favour of Pyramid, the Pylons Project team decided to write a custom session management solution for Pyramid and let the user handle more advanced backends. Since 2015 beaker maintenance has been passed to the TurboGears project who ported it to a fully native Python3 solution and it’s stille the de-facto standard for Sessions and Caching on Bottle. The talk will cover the advantages and drawbacks of the architectural decisions behind the 10 years of history of Beaker, the drawbacks we discovered while porting it to Python3 and which have been the “wrong choices” and how we plan to solve them and make it shine again as the best whole-around solution for Sessions and Caching on WSGI.
PyConIT6 - MAKING SESSIONS AND CACHING ROOMMATES
PyConIT6 - MAKING SESSIONS AND CACHING ROOMMATES
Alessandro Molina
Standardizing the representation of news in JSON
IPTC News in JSON AGM 2013
IPTC News in JSON AGM 2013
Stuart Myles
Superficial mongo db
Superficial mongo db
DaeMyung Kang
Hot/Cold Data Transfer between Redis and Mongo concept
TopDB data transfer
TopDB data transfer
Chonpin HSU
C# Development (Sam Corder)
C# Development (Sam Corder)
MongoSF
PyConIT6 - Messing up with pymongo for fun and profit
PyConIT6 - Messing up with pymongo for fun and profit
Alessandro Molina
An intro to MongoDB
MongoDB - javascript for your data
MongoDB - javascript for your data
aaronheckmann
Latinoware
Latinoware
kchodorow
Mongo DB for Beginners
MongoDB
MongoDB
kesavan N B
Introduction to MongoDB, Rails Mongoid ORM and some data modelling examples.
Simple MongoDB design for Rails apps
Simple MongoDB design for Rails apps
Sérgio Santos
Meetup#1: 10 reasons to fall in love with MongoDB
Meetup#1: 10 reasons to fall in love with MongoDB
Minsk MongoDB User Group
My first experience with MongoDB, to know what is and how can i use a NoSql (Non Relational) database, to speed up my website locality typehead, originally made with MySQL (Doctrine) queries
How do i Meet MongoDB
How do i Meet MongoDB
Antonio Scalzo
Tips for every mongodb user, the tips itself is coming from self experience after 1 (more) year using MongoDB as main database
A Year With MongoDB: The Tips
A Year With MongoDB: The Tips
Rizky Abdilah
MongoDB Java Development - MongoBoston 2010
MongoDB Java Development - MongoBoston 2010
Eliot Horowitz
Mongodb Database
Mongo db queries
Mongo db queries
ssuser6d5faa
Slides from a talk about MongoDB internals given at Gluecon 2010.
Inside MongoDB: the Internals of an Open-Source Database
Inside MongoDB: the Internals of an Open-Source Database
Mike Dirolf
Presented at MongoSF on April 30, 2010.
Java development with MongoDB
Java development with MongoDB
James Williams
NoSQL Taiwan 分享 蘇國鈞 / Monster Supreme
Spring Data MongoDB 介紹
Spring Data MongoDB 介紹
Kuo-Chun Su
More Related Content
What's hot
Java Development with MongoDB
Java Development with MongoDB
Scott Hernandez
As the applications we build are increasingly driven by text, doing data ingestion, management, loading, and preprocessing in a robust, organized, parallel, and memory-safe way can get tricky. This talk walks through the highs (a custom billion-word corpus!), the lows (segfaults, 400 errors, pesky mp3s), and the new Python libraries we built to ingest and preprocess text for machine learning. While applications like Siri, Cortana, and Alexa may still seem like novelties, language-aware applications are rapidly becoming the new norm. Under the hood, these applications take in text data as input, parse it into composite parts, compute upon those composites, and then recombine them to deliver a meaningful and tailored end result. The best applications use language models trained on domain-specific corpora (collections of related documents containing natural language) that reduce ambiguity and prediction space to make results more intelligible. Here's the catch: these corpora are huge, generally consisting of at least hundreds of gigabytes of data inside of thousands of documents, and often more! In this talk, we'll see how working with text data is substantially different from working with numeric data, and show that ingesting a raw text corpus in a form that will support the construction of a data product is no trivial task. For instance, when dealing with a text corpus, you have to consider not only how the data comes in (e.g. respecting rate limits, terms of use, etc.), but also where to store the data and how to keep it organized. Because the data comes from the web, it's often unpredictable, containing not only text but audio files, ads, videos, and other kinds of web detritus. Since the datasets are large, you need to anticipate potential performance problems and ensure memory safety through streaming data loading and multiprocessing. Finally, in anticipation of the machine learning components, you have to establish a standardized method of transforming your raw ingested text into a corpus that's ready for computation and modeling. In this talk, we'll explore many of the challenges we experienced along the way and introduce two Python packages that make this work a bit easier: Baleen and Minke. Baleen is a package for ingesting formal natural language data from the discourse of professional and amateur writers, like bloggers and news outlets, in a categorized fashion. Minke extends Baleen with a library that performs parallel data loading, preprocessing, normalization, and keyphrase extraction to support machine learning on a large-scale custom corpus.
Building a Gigaword Corpus (PyCon 2017)
Building a Gigaword Corpus (PyCon 2017)
Rebecca Bilbro
This Back to Basics webinar series will introduce you to NoSQL and the MongoDB database. You will find out what MongoDB is, why you would use it, and what you would use it for.
Back to Basics: My First MongoDB Application
Back to Basics: My First MongoDB Application
MongoDB
As the applications we build are increasingly driven by text, doing data ingestion, management, loading, and preprocessing in a robust, organized, parallel, and memory-safe way can get tricky. This talk walks through the highs (a custom billion-word corpus!), the lows (segfaults, 400 errors, pesky mp3s), and the new Python libraries we built to ingest and preprocess text for machine learning. While applications like Siri, Cortana, and Alexa may still seem like novelties, language-aware applications are rapidly becoming the new norm. Under the hood, these applications take in text data as input, parse it into composite parts, compute upon those composites, and then recombine them to deliver a meaningful and tailored end result. The best applications use language models trained on domain-specific corpora (collections of related documents containing natural language) that reduce ambiguity and prediction space to make results more intelligible. Here's the catch: these corpora are huge, generally consisting of at least hundreds of gigabytes of data inside of thousands of documents, and often more! In this talk, we'll see how working with text data is substantially different from working with numeric data, and show that ingesting a raw text corpus in a form that will support the construction of a data product is no trivial task. For instance, when dealing with a text corpus, you have to consider not only how the data comes in (e.g. respecting rate limits, terms of use, etc.), but also where to store the data and how to keep it organized. Because the data comes from the web, it's often unpredictable, containing not only text but audio files, ads, videos, and other kinds of web detritus. Since the datasets are large, you need to anticipate potential performance problems and ensure memory safety through streaming data loading and multiprocessing. Finally, in anticipation of the machine learning components, you have to establish a standardized method of transforming your raw ingested text into a corpus that's ready for computation and modeling. In this talk, we'll explore many of the challenges we experienced along the way and introduce two Python packages that make this work a bit easier: Baleen and Minke. Baleen is a package for ingesting formal natural language data from the discourse of professional and amateur writers, like bloggers and news outlets, in a categorized fashion. Minke extends Baleen with a library that performs parallel data loading, preprocessing, normalization, and keyphrase extraction to support machine learning on a large-scale custom corpus.
Data Intelligence 2017 - Building a Gigaword Corpus
Data Intelligence 2017 - Building a Gigaword Corpus
Rebecca Bilbro
Beaker is probably the most widespread cross-framework solution to manage sessions and caching in the python web ecosystem. Born in 2005 from Pylons author has been historically maintained together with the Pylons framework. Since Pylons has been deprecated in favour of Pyramid, the Pylons Project team decided to write a custom session management solution for Pyramid and let the user handle more advanced backends. Since 2015 beaker maintenance has been passed to the TurboGears project who ported it to a fully native Python3 solution and it’s stille the de-facto standard for Sessions and Caching on Bottle. The talk will cover the advantages and drawbacks of the architectural decisions behind the 10 years of history of Beaker, the drawbacks we discovered while porting it to Python3 and which have been the “wrong choices” and how we plan to solve them and make it shine again as the best whole-around solution for Sessions and Caching on WSGI.
PyConIT6 - MAKING SESSIONS AND CACHING ROOMMATES
PyConIT6 - MAKING SESSIONS AND CACHING ROOMMATES
Alessandro Molina
Standardizing the representation of news in JSON
IPTC News in JSON AGM 2013
IPTC News in JSON AGM 2013
Stuart Myles
Superficial mongo db
Superficial mongo db
DaeMyung Kang
Hot/Cold Data Transfer between Redis and Mongo concept
TopDB data transfer
TopDB data transfer
Chonpin HSU
C# Development (Sam Corder)
C# Development (Sam Corder)
MongoSF
PyConIT6 - Messing up with pymongo for fun and profit
PyConIT6 - Messing up with pymongo for fun and profit
Alessandro Molina
An intro to MongoDB
MongoDB - javascript for your data
MongoDB - javascript for your data
aaronheckmann
Latinoware
Latinoware
kchodorow
Mongo DB for Beginners
MongoDB
MongoDB
kesavan N B
Introduction to MongoDB, Rails Mongoid ORM and some data modelling examples.
Simple MongoDB design for Rails apps
Simple MongoDB design for Rails apps
Sérgio Santos
Meetup#1: 10 reasons to fall in love with MongoDB
Meetup#1: 10 reasons to fall in love with MongoDB
Minsk MongoDB User Group
My first experience with MongoDB, to know what is and how can i use a NoSql (Non Relational) database, to speed up my website locality typehead, originally made with MySQL (Doctrine) queries
How do i Meet MongoDB
How do i Meet MongoDB
Antonio Scalzo
Tips for every mongodb user, the tips itself is coming from self experience after 1 (more) year using MongoDB as main database
A Year With MongoDB: The Tips
A Year With MongoDB: The Tips
Rizky Abdilah
MongoDB Java Development - MongoBoston 2010
MongoDB Java Development - MongoBoston 2010
Eliot Horowitz
Mongodb Database
Mongo db queries
Mongo db queries
ssuser6d5faa
Slides from a talk about MongoDB internals given at Gluecon 2010.
Inside MongoDB: the Internals of an Open-Source Database
Inside MongoDB: the Internals of an Open-Source Database
Mike Dirolf
What's hot
(20)
Java Development with MongoDB
Java Development with MongoDB
Building a Gigaword Corpus (PyCon 2017)
Building a Gigaword Corpus (PyCon 2017)
Back to Basics: My First MongoDB Application
Back to Basics: My First MongoDB Application
Data Intelligence 2017 - Building a Gigaword Corpus
Data Intelligence 2017 - Building a Gigaword Corpus
PyConIT6 - MAKING SESSIONS AND CACHING ROOMMATES
PyConIT6 - MAKING SESSIONS AND CACHING ROOMMATES
IPTC News in JSON AGM 2013
IPTC News in JSON AGM 2013
Superficial mongo db
Superficial mongo db
TopDB data transfer
TopDB data transfer
C# Development (Sam Corder)
C# Development (Sam Corder)
PyConIT6 - Messing up with pymongo for fun and profit
PyConIT6 - Messing up with pymongo for fun and profit
MongoDB - javascript for your data
MongoDB - javascript for your data
Latinoware
Latinoware
MongoDB
MongoDB
Simple MongoDB design for Rails apps
Simple MongoDB design for Rails apps
Meetup#1: 10 reasons to fall in love with MongoDB
Meetup#1: 10 reasons to fall in love with MongoDB
How do i Meet MongoDB
How do i Meet MongoDB
A Year With MongoDB: The Tips
A Year With MongoDB: The Tips
MongoDB Java Development - MongoBoston 2010
MongoDB Java Development - MongoBoston 2010
Mongo db queries
Mongo db queries
Inside MongoDB: the Internals of an Open-Source Database
Inside MongoDB: the Internals of an Open-Source Database
Similar to Java Development with MongoDB (James Williams)
Presented at MongoSF on April 30, 2010.
Java development with MongoDB
Java development with MongoDB
James Williams
NoSQL Taiwan 分享 蘇國鈞 / Monster Supreme
Spring Data MongoDB 介紹
Spring Data MongoDB 介紹
Kuo-Chun Su
I uplopaded this version in Open Office .ODP format, which is presumably the reason slideshare messed up the formatting. Slideshare, can we get some better support for open formats, stat? If you'd like to view these slides, I've re-uploaded this talk in .ppt format.
This upload requires better support for ODP format
This upload requires better support for ODP format
Forest Mars
After a short introduction to the Java driver for MongoDB, we'll have a look at the more abtract persistence frameworks like Morphia, Spring Data, Jongo and Hibernate OGM.
Morphia, Spring Data & Co.
Morphia, Spring Data & Co.
Tobias Trelle
After a short introduction to the MongoDB Java driver we'll have a detailed look at higher level persistence frameworks like Morphia, Spring Data MongoDB and Hibernate OGM with lots of examples.
Java Persistence Frameworks for MongoDB
Java Persistence Frameworks for MongoDB
Tobias Trelle
Java Persistence Frameworks for MongoDB
Java Persistence Frameworks for MongoDB
MongoDB
I present the MongoDB Java driver and the most popular object/document mappers for MongoDB: Spring Data, Jongo, Morphia, EclipseLink.
Spring Data, Jongo & Co.
Spring Data, Jongo & Co.
Tobias Trelle
Mongo DB Course Notes a series of 6
Mongo learning series
Mongo learning series
Prashanth Panduranga
San Francisco Java User Group
San Francisco Java User Group
kchodorow
Slides of my talk @ JAX 2012
Data access 2.0? Please welcome: Spring Data!
Data access 2.0? Please welcome: Spring Data!
Oliver Gierke
From A Morning with MongoDB - Milan on October 24, 2012.
REST Web API with MongoDB
REST Web API with MongoDB
MongoDB
Learn everything you need to know to get started building a MongoDB-based app in Java. We'll explore the relationship between MongoDB and various languages on the Java Virtual Machine such as Java, Scala, and Clojure. From there, we'll examine the popular frameworks and integration points between MongoDB and the JVM including Spring Data and object-document mappers like Morphia.
MongoDB + Java - Everything you need to know
MongoDB + Java - Everything you need to know
Norberto Leite
Learn everything you need to know to get started building a MongoDB-based app in Java. We'll explore the relationship between MongoDB and various languages on the Java Virtual Machine such as Java, Scala, and Clojure. From there, we'll examine the popular frameworks and integration points between MongoDB and the JVM including Spring Data and object-document mappers like Morphia.
Mongo+java (1)
Mongo+java (1)
MongoDB
This talk, given at PyGotham 2011, will teach you techniques using the popular NoSQL database MongoDB and the Python library Ming to write maintainable, high-performance, and scalable applications. We will cover everything you need to become an effective Ming/MongoDB developer from basic PyMongo queries to high-level object-document mapping setups in Ming.
Rapid and Scalable Development with MongoDB, PyMongo, and Ming
Rapid and Scalable Development with MongoDB, PyMongo, and Ming
Rick Copeland
This webinar will walk you through building a simple Java-based application in MongoDB. We’ll cover the basics of MongoDB’s document model, query language, aggregation framework, and deployment architecture. In this webinar, you will discover: - How easy it is to start building Java applications with MongoDB - Key features for manipulating and accessing data - High availability and scale-out architecture - WriteConcerns and ReadPreference
Webinar: Building Your First App with MongoDB and Java
Webinar: Building Your First App with MongoDB and Java
MongoDB
Slides of my talk at OOP2012.
An introduction into Spring Data
An introduction into Spring Data
Oliver Gierke
Smoothing Your Java with DSLs
Smoothing Your Java with DSLs
intelliyole
2011-11-02 | 03:45 PM - 04:35 PM | The NoSQL movement has stormed onto the development scene, and it’s left a few developers scratching their heads, trying to figure out when to use a NoSQL database instead of a regular database, much less which NoSQL database to use. In this session, we’ll examine the NoSQL ecosystem, look at the major players, how the compare and contrast, and what sort of architectural implications they have for software systems in general.
Architecture | Busy Java Developers Guide to NoSQL | Ted Neward
Architecture | Busy Java Developers Guide to NoSQL | Ted Neward
JAX London
Lessons learnt developing the new Java driver for MongoDB. This is a totally different version of my backwards compatibility talk, delivered at JFokus.
What do you mean, Backwards Compatibility?
What do you mean, Backwards Compatibility?
Trisha Gee
NoSQL Taiwan #1 Talk
mongodb-introduction
mongodb-introduction
Tse-Ching Ho
Similar to Java Development with MongoDB (James Williams)
(20)
Java development with MongoDB
Java development with MongoDB
Spring Data MongoDB 介紹
Spring Data MongoDB 介紹
This upload requires better support for ODP format
This upload requires better support for ODP format
Morphia, Spring Data & Co.
Morphia, Spring Data & Co.
Java Persistence Frameworks for MongoDB
Java Persistence Frameworks for MongoDB
Java Persistence Frameworks for MongoDB
Java Persistence Frameworks for MongoDB
Spring Data, Jongo & Co.
Spring Data, Jongo & Co.
Mongo learning series
Mongo learning series
San Francisco Java User Group
San Francisco Java User Group
Data access 2.0? Please welcome: Spring Data!
Data access 2.0? Please welcome: Spring Data!
REST Web API with MongoDB
REST Web API with MongoDB
MongoDB + Java - Everything you need to know
MongoDB + Java - Everything you need to know
Mongo+java (1)
Mongo+java (1)
Rapid and Scalable Development with MongoDB, PyMongo, and Ming
Rapid and Scalable Development with MongoDB, PyMongo, and Ming
Webinar: Building Your First App with MongoDB and Java
Webinar: Building Your First App with MongoDB and Java
An introduction into Spring Data
An introduction into Spring Data
Smoothing Your Java with DSLs
Smoothing Your Java with DSLs
Architecture | Busy Java Developers Guide to NoSQL | Ted Neward
Architecture | Busy Java Developers Guide to NoSQL | Ted Neward
What do you mean, Backwards Compatibility?
What do you mean, Backwards Compatibility?
mongodb-introduction
mongodb-introduction
More from MongoSF
Webinar: Typische MongoDB Anwendungsfälle (Common MongoDB Use Cases)
Webinar: Typische MongoDB Anwendungsfälle (Common MongoDB Use Cases)
MongoSF
Schema design with MongoDB (Dwight Merriman)
Schema design with MongoDB (Dwight Merriman)
MongoSF
Flexible Event Tracking (Paul Gebheim)
Flexible Event Tracking (Paul Gebheim)
MongoSF
Administration (Eliot Horowitz)
Administration (Eliot Horowitz)
MongoSF
Ruby Development and MongoMapper (John Nunemaker)
Ruby Development and MongoMapper (John Nunemaker)
MongoSF
MongoHQ (Jason McCay & Ben Wyrosdick)
MongoHQ (Jason McCay & Ben Wyrosdick)
MongoSF
Administration
Administration
MongoSF
Sharding with MongoDB (Eliot Horowitz)
Sharding with MongoDB (Eliot Horowitz)
MongoSF
Practical Ruby Projects (Alex Sharp)
Practical Ruby Projects (Alex Sharp)
MongoSF
Implementing MongoDB at Shutterfly (Kenny Gorman)
Implementing MongoDB at Shutterfly (Kenny Gorman)
MongoSF
Debugging Ruby (Aman Gupta)
Debugging Ruby (Aman Gupta)
MongoSF
Indexing and Query Optimizer (Aaron Staple)
Indexing and Query Optimizer (Aaron Staple)
MongoSF
MongoDB Replication (Dwight Merriman)
MongoDB Replication (Dwight Merriman)
MongoSF
Zero to Mongo in 60 Hours
Zero to Mongo in 60 Hours
MongoSF
Building a Mongo DSL in Scala at Hot Potato (Lincoln Hochberg)
Building a Mongo DSL in Scala at Hot Potato (Lincoln Hochberg)
MongoSF
PHP Development with MongoDB (Fitz Agard)
PHP Development with MongoDB (Fitz Agard)
MongoSF
Real time ecommerce analytics with MongoDB at Gilt Groupe (Michael Bryzek & M...
Real time ecommerce analytics with MongoDB at Gilt Groupe (Michael Bryzek & M...
MongoSF
From MySQL to MongoDB at Wordnik (Tony Tam)
From MySQL to MongoDB at Wordnik (Tony Tam)
MongoSF
Map/reduce, geospatial indexing, and other cool features (Kristina Chodorow)
Map/reduce, geospatial indexing, and other cool features (Kristina Chodorow)
MongoSF
More from MongoSF
(19)
Webinar: Typische MongoDB Anwendungsfälle (Common MongoDB Use Cases)
Webinar: Typische MongoDB Anwendungsfälle (Common MongoDB Use Cases)
Schema design with MongoDB (Dwight Merriman)
Schema design with MongoDB (Dwight Merriman)
Flexible Event Tracking (Paul Gebheim)
Flexible Event Tracking (Paul Gebheim)
Administration (Eliot Horowitz)
Administration (Eliot Horowitz)
Ruby Development and MongoMapper (John Nunemaker)
Ruby Development and MongoMapper (John Nunemaker)
MongoHQ (Jason McCay & Ben Wyrosdick)
MongoHQ (Jason McCay & Ben Wyrosdick)
Administration
Administration
Sharding with MongoDB (Eliot Horowitz)
Sharding with MongoDB (Eliot Horowitz)
Practical Ruby Projects (Alex Sharp)
Practical Ruby Projects (Alex Sharp)
Implementing MongoDB at Shutterfly (Kenny Gorman)
Implementing MongoDB at Shutterfly (Kenny Gorman)
Debugging Ruby (Aman Gupta)
Debugging Ruby (Aman Gupta)
Indexing and Query Optimizer (Aaron Staple)
Indexing and Query Optimizer (Aaron Staple)
MongoDB Replication (Dwight Merriman)
MongoDB Replication (Dwight Merriman)
Zero to Mongo in 60 Hours
Zero to Mongo in 60 Hours
Building a Mongo DSL in Scala at Hot Potato (Lincoln Hochberg)
Building a Mongo DSL in Scala at Hot Potato (Lincoln Hochberg)
PHP Development with MongoDB (Fitz Agard)
PHP Development with MongoDB (Fitz Agard)
Real time ecommerce analytics with MongoDB at Gilt Groupe (Michael Bryzek & M...
Real time ecommerce analytics with MongoDB at Gilt Groupe (Michael Bryzek & M...
From MySQL to MongoDB at Wordnik (Tony Tam)
From MySQL to MongoDB at Wordnik (Tony Tam)
Map/reduce, geospatial indexing, and other cool features (Kristina Chodorow)
Map/reduce, geospatial indexing, and other cool features (Kristina Chodorow)
Recently uploaded
FIDO Taipei Workshop: Securing the Edge with FDO
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
FIDO Alliance
FIDO Taipei Workshop: Securing the Edge with FDO
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
FIDO Alliance
Designing inclusive products is not only a social responsibility but also a business imperative. This talk delves into the journey of creating accessible hardware products that cater to diverse user needs. Key Topics Covered: 1. Introduction to Inclusive Design - Importance of accessibility in product design - Overview of Comcast's commitment to making products accessible to a wide audience 2. Case Study: Xfinity Large Button Voice Remote - Initial challenges and the evolution of the product - User research and feedback that shaped the design - Key features of the final product and their benefits 3. Designing for Diverse Needs - Understanding human-centered design and its historical context - The impact of designing for people with disabilities on overall product quality - Examples from other industries, such as architecture and industrial design 4. Integrating Accessibility from the Beginning - The cost and efficiency benefits of designing for accessibility from the start - The process of embedding accessibility as a core trait rather than an optional feature 5. Real-World Impact and Continuous Improvement - Insights from in-home studies with users having assistive needs - How continuous feedback and iterative design lead to better products - The role of inclusive research and development practices
Designing for Hardware Accessibility at Comcast
Designing for Hardware Accessibility at Comcast
UXDXConf
This our Twelfth semiannual report on the global Cryptocurrency mining industry. Bitcoin is the world’s largest special purpose supercomputer. And it is globally decentralized. Millions of nodes all run the same open-source code to secure the Bitcoin network, create value, and put new transactions onto the distributed ledger. The latest Top500 list has just been announced at the ISC 2024 conference in Hamburg, and once again the Frontier supercomputer with 1.2 Exaflops peak performance is number one on the list. If assigned to SHA-256 hashing, Frontier would provide only the equivalent hash rate of about three cabinets of the latest high-end Bitcoin mining systems, costing less than 0.1% of Frontier’s cost. Michael Saylor, Chairman of MicroStrategy, has pointed out that GPUs are two orders of magnitude slower than the 5-nanometer technology of custom ASICs used for Bitcoin mining today. He makes the point that the Bitcoin network is unassailable by all of the hyperscale computing resources combined in AWS, Google, and Microsoft Azure cloud data centers today.
TopCryptoSupers 12thReport OrionX May2024
TopCryptoSupers 12thReport OrionX May2024
Stephen Perrenod
New customer? New industry? New cloud? New team? A lot to handle! How to ensure the success of the project? Start it well! I've created the 3 areas of focus at the beginning of the project that helped me in multiple roles (BA, PO, and Consultant). Learn from real-world experiences and discover how these insights can empower you to deliver unparalleled value to your customers right from the project's start.
Powerful Start- the Key to Project Success, Barbara Laskowska
Powerful Start- the Key to Project Success, Barbara Laskowska
CzechDreamin
Intrigued by why some of the world's largest companies (Netflix, Google, Cisco, Twitter, Uber etc) are using gRPC? In this demo based talk we delve into the world of gRPC in .Net, what it does and why we should use it. We compare the interface with both Rest and graphQL. We will show you how to implement grpc server-side in .net and in the web. Finally, I will show you how the tooling helps you deliver powerful interfaces and interact with them quickly and simply.
Demystifying gRPC in .Net by John Staveley
Demystifying gRPC in .Net by John Staveley
John Staveley
This instalment looked at building performance at the earliest stages of your project, covering Interoperability, Solar and Daylighting.
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and Planning
IES VE
FIDO Taipei Workshop: Securing the Edge with FDO
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
FIDO Alliance
Speaker : Daniela Barbosa, Executive Director of the Hyperledger Foundation 2024年5月16日開催 Hyperledger Tokyo Meetupで講演
Overview of Hyperledger Foundation
Overview of Hyperledger Foundation
Hyperleger Tokyo Meetup
This is a powerpoint that features Microsoft Teams Devices and everything that is new including updates to its software and devices for April 2024
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024
Stephanie Beckett
PLAI is the Italian Accelerator igniting the growth of innovative Startups and nurturing a community of talents in the Generative AI field.
PLAI - Acceleration Program for Generative A.I. Startups
PLAI - Acceleration Program for Generative A.I. Startups
Stefano
A recap of interesting points and quotes from the May 2024 WSO2CON opensource application development conference. Focuses primarily on keynotes and panel sessions.
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
Jennifer Lim
FIDO Taipei Workshop: Securing the Edge with FDO
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
FIDO Alliance
Learn about the basics of OAuth 2.0 and the different OAuth flows in this introductory video. Understand how OAuth works and the various authorization mechanisms involved.
Oauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoft
shyamraj55
Explore the core of Salesforce success in 'Salesforce Adoption – Metrics, Methods, and Motivation.' We will discuss essential metrics, effective methods to drive adoption, and the driving force behind user engagement and explore strategies for onboarding, training, and continuous support that empower users to navigate the platform seamlessly. By leveraging these tools, you can effectively measure adoption against your company’s goals and create an environment where users not only adopt Salesforce but actively contribute to its ongoing success.
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
CzechDreamin
A talk given by Julian Hyde at the San Francisco Distributed Systems Meetup on May 22, 2024.
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
Julian Hyde
що таке продакт менеджмент? про професію і карєру продактів для світчерів та початківців.
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджера
Mark Opanasiuk
Heather Hedden, Senior Consultant at Enterprise Knowledge, presented “Enterprise Knowledge Graphs: The Importance of Semantics” on May 9, 2024, at the annual Data Summit in Boston. In her presentation, Hedden describes the components of an enterprise knowledge graph and provides further insight into the semantic layer – or knowledge model – component, which includes an ontology and controlled vocabularies, such as taxonomies, for controlled metadata. While data experts tend to focus on the graph database components (RDF triple store or a label property graph), Hedden emphasizes they should not overlook the importance of the semantic layer.
Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge
FIDO Taipei Workshop: Securing the Edge with FDO
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
FIDO Alliance
Brief Introduction to Generative AI and LLM in particular. Overview of the market, and usages of LLMs. What's it like to train and build a model. Retrieval Augmented Generation 101, explained for non savvies, and a perspective of what are the moving parts making it complex
AI presentation and introduction - Retrieval Augmented Generation RAG 101
AI presentation and introduction - Retrieval Augmented Generation RAG 101
vincent683379
Recently uploaded
(20)
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Secure Zero Touch enabled Edge compute with Dell NativeEdge via FDO _ Brad at...
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Linux Foundation Edge _ Overview of FDO Software Components _ Randy at Intel.pdf
Designing for Hardware Accessibility at Comcast
Designing for Hardware Accessibility at Comcast
TopCryptoSupers 12thReport OrionX May2024
TopCryptoSupers 12thReport OrionX May2024
Powerful Start- the Key to Project Success, Barbara Laskowska
Powerful Start- the Key to Project Success, Barbara Laskowska
Demystifying gRPC in .Net by John Staveley
Demystifying gRPC in .Net by John Staveley
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and Planning
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
The Value of Certifying Products for FDO _ Paul at FIDO Alliance.pdf
Overview of Hyperledger Foundation
Overview of Hyperledger Foundation
What's New in Teams Calling, Meetings and Devices April 2024
What's New in Teams Calling, Meetings and Devices April 2024
PLAI - Acceleration Program for Generative A.I. Startups
PLAI - Acceleration Program for Generative A.I. Startups
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
WSO2CONMay2024OpenSourceConferenceDebrief.pptx
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
ASRock Industrial FDO Solutions in Action for Industrial Edge AI _ Kenny at A...
Oauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoft
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
Measures in SQL (a talk at SF Distributed Systems meetup, 2024-05-22)
Intro in Product Management - Коротко про професію продакт менеджера
Intro in Product Management - Коротко про професію продакт менеджера
Enterprise Knowledge Graphs - Data Summit 2024
Enterprise Knowledge Graphs - Data Summit 2024
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
Where to Learn More About FDO _ Richard at FIDO Alliance.pdf
AI presentation and introduction - Retrieval Augmented Generation RAG 101
AI presentation and introduction - Retrieval Augmented Generation RAG 101
Java Development with MongoDB (James Williams)
1.
Java Development with
MongoDB James Williams Software Engineer, BT/Ribbit
2.
3.
4.
5.
6.
7.
8.
9.
10.
11.
12.
13.
14.
15.
Beyond the Java
Language
16.
17.
18.
19.
20.
21.
Download now